好色先生

好色先生

Explore the latest content from across our publications

Log In

Forgot Password?
Create New Account

Loading... please wait

Abstract Details

The Cognitive Arc: Speech Biomarkers as Potential Indicators of Cognitive Decline in Older Adults
Aging, Dementia, and Behavioral Neurology
P2 - Poster Session 2 (11:45 AM-12:45 PM)
13-008
To evaluate the potential of digital speech analysis in detecting and characterizing cognitive changes in older adults by examining key acoustic and temporal speech features.
Early cognitive decline is often subtle and might not be picked by conventional assessments. Paper-based tests can be challenging in high-volume clinics or for individuals with limited literacy and can often be influenced by practice effects and patient variability thus limiting timely detection and intervention for cognitive decline. Speech-based assessments offer a non-invasive way to detect these changes early on and more reliably.

The study included older adults with varied cognitive abilities. Speech samples were obtained as participants read a standardized text aloud. Acoustic and temporal features (specifically pitch, intensity, harmonicity, shimmer, speech-to-pause ratio, pause time, DTW, and vocal centralization) were extracted and quantified using tools like Praat and Python. Group differences were examined using t-tests, and associations with MoCA scores were explored through Spearman correlations. The most informative speech markers were further analyzed for cognitive differences. 

The study included 67 participants, 40 of whom demonstrated cognitive decline. Among the speech features analyzed, DTW similarity showed the strongest positive correlation with MoCA scores (rho = 0.578, p < 0.001). Voice centralization (rho = −0.467, p < 0.001), Pause Time (rho = −0.449, p < 0.001), and Pitch Slope (rho = −0.374, p < 0.002) were negatively associated with cognitive performance, while Speech-to-Pause Ratio demonstrated a modest positive correlation (rho = 0.365, p < 0.002).

Speech markers like DTW similarity, voice centralization, time of pause, slope of pitch, and speech-to-pause ratio exhibited strong correlations with cognitive outcomes. Together, these results suggest that speech-based assessments offer a non-invasive method for early detection and monitoring of cognitive changes. Thus, enabling timely interventions and reducing the burden of undiagnosed cognitive decline in older adults.
Authors/Disclosures
Ria Tahiliani, MBBS, Medical Student
PRESENTER
Miss Tahiliani has nothing to disclose.
Meenakshi Shah, MD Dr. Shah has nothing to disclose.
Ana M. Salazar Ana M. Salazar has nothing to disclose.
Kushal K. Thakur, MBBS Mr. Thakur has nothing to disclose.
Urvashi Gurbani, Postgraduate Ms. Gurbani has nothing to disclose.
Sadhana Hingorani, MD Miss Hingorani has nothing to disclose.